import datetime as dt

from collections import OrderedDict
from itertools import product
from unittest import SkipTest, skipIf

import numpy as np
from holoviews.core.data import Dataset
from holoviews.core.util import pd, date_range
from holoviews.element import Image, Curve, RGB, HSV

try:
    import dask.array as da
except ImportError:
    da = None

pd_skip = skipIf(pd is None, "pandas is not available")


from .base import (
    GriddedInterfaceTests, InterfaceTests, HomogeneousColumnTests, DatatypeContext
)
from .testimageinterface import (
    Image_ImageInterfaceTests, RGB_ImageInterfaceTests, HSV_ImageInterfaceTests
)


class GridInterfaceTests(GriddedInterfaceTests, HomogeneousColumnTests, InterfaceTests):

    datatype = 'grid'
    data_type = (OrderedDict, dict)
    element = Dataset

    @pd_skip
    def test_dataset_dataframe_init_hm(self):
        "Tests support for homogeneous DataFrames"
        exception = "None of the available storage backends "\
         "were able to support the supplied data format."
        with self.assertRaisesRegexp(Exception, exception):
            Dataset(pd.DataFrame({'x':self.xs, 'x2':self.xs_2}),
                    kdims=['x'], vdims=['x2'])

    @pd_skip
    def test_dataset_dataframe_init_hm_alias(self):
        "Tests support for homogeneous DataFrames"
        exception = "None of the available storage backends "\
         "were able to support the supplied data format."
        with self.assertRaisesRegexp(Exception, exception):
            Dataset(pd.DataFrame({'x':self.xs, 'x2':self.xs_2}),
                    kdims=['x'], vdims=['x2'])

    def test_irregular_grid_data_values(self):
        nx, ny = 20, 5
        xs, ys = np.meshgrid(np.arange(nx)+0.5, np.arange(ny)+0.5)
        zs = np.arange(100).reshape(5, 20)
        ds = Dataset((xs, ys, zs), ['x', 'y'], 'z')
        self.assertEqual(ds.dimension_values(2, flat=False), zs)
        self.assertEqual(ds.interface.coords(ds, 'x'), xs)
        self.assertEqual(ds.interface.coords(ds, 'y'), ys)

    def test_irregular_grid_data_values_inverted_y(self):
        nx, ny = 20, 5
        xs, ys = np.meshgrid(np.arange(nx)+0.5, np.arange(ny)*-1+0.5)
        zs = np.arange(100).reshape(5, 20)
        ds = Dataset((xs, ys, zs), ['x', 'y'], 'z')
        self.assertEqual(ds.dimension_values(2, flat=False), zs)
        self.assertEqual(ds.interface.coords(ds, 'x'), xs)
        self.assertEqual(ds.interface.coords(ds, 'y'), ys)

    def test_dataset_sort_hm(self):
        raise SkipTest("Not supported")

    def test_dataset_sort_reverse_hm(self):
        raise SkipTest("Not supported")

    def test_dataset_sort_vdim_hm(self):
        exception = ('Compressed format cannot be sorted, either instantiate '
                     'in the desired order or use the expanded format.')
        with self.assertRaisesRegexp(Exception, exception):
            self.dataset_hm.sort('y')

    def test_dataset_sort_reverse_vdim_hm(self):
        exception = ('Compressed format cannot be sorted, either instantiate '
                     'in the desired order or use the expanded format.')
        with self.assertRaisesRegexp(Exception, exception):
            self.dataset_hm.sort('y', reverse=True)

    def test_dataset_sort_vdim_hm_alias(self):
        exception = ('Compressed format cannot be sorted, either instantiate '
                     'in the desired order or use the expanded format.')
        with self.assertRaisesRegexp(Exception, exception):
            self.dataset_hm.sort('y')

    def test_dataset_groupby(self):
        self.assertEqual(self.dataset_hm.groupby('x').keys(), list(self.xs))

    def test_dataset_add_dimensions_value_hm(self):
        with self.assertRaisesRegexp(Exception, 'Cannot add key dimension to a dense representation.'):
            self.dataset_hm.add_dimension('z', 1, 0)

    def test_dataset_add_dimensions_values_hm(self):
        table =  self.dataset_hm.add_dimension('z', 1, range(1,12), vdim=True)
        self.assertEqual(table.vdims[1], 'z')
        self.compare_arrays(table.dimension_values('z'), np.array(list(range(1,12))))

    def test_dataset_add_dimensions_values_hm_alias(self):
        table =  self.dataset_hm.add_dimension(('z', 'Z'), 1, range(1,12), vdim=True)
        self.assertEqual(table.vdims[1], 'Z')
        self.compare_arrays(table.dimension_values('Z'), np.array(list(range(1,12))))

    def test_dataset_2D_columnar_shape(self):
        array = np.random.rand(11, 11)
        dataset = Dataset({'x':self.xs, 'y':self.y_ints, 'z': array},
                          kdims=['x', 'y'], vdims=['z'])
        self.assertEqual(dataset.shape, (11*11, 3))

    def test_dataset_2D_gridded_shape(self):
        array = np.random.rand(12, 11)
        dataset = Dataset({'x':self.xs, 'y': range(12), 'z': array},
                          kdims=['x', 'y'], vdims=['z'])
        self.assertEqual(dataset.interface.shape(dataset, gridded=True),
                         (12, 11))

    def test_dataset_2D_aggregate_partial_hm(self):
        array = np.random.rand(11, 11)
        dataset = Dataset({'x':self.xs, 'y':self.y_ints, 'z': array},
                          kdims=['x', 'y'], vdims=['z'])
        self.assertEqual(dataset.aggregate(['x'], np.mean),
                         Dataset({'x':self.xs, 'z': np.mean(array, axis=0)},
                                 kdims=['x'], vdims=['z']))

    def test_dataset_2D_aggregate_partial_hm_alias(self):
        array = np.random.rand(11, 11)
        dataset = Dataset({'x':self.xs, 'y':self.y_ints, 'z': array},
                          kdims=[('x', 'X'), ('y', 'Y')], vdims=[('z', 'Z')])
        self.assertEqual(dataset.aggregate(['X'], np.mean),
                         Dataset({'x':self.xs, 'z': np.mean(array, axis=0)},
                                 kdims=[('x', 'X')], vdims=[('z', 'Z')]))

    def test_dataset_2D_reduce_hm(self):
        array = np.random.rand(11, 11)
        dataset = Dataset({'x':self.xs, 'y':self.y_ints, 'z': array},
                          kdims=['x', 'y'], vdims=['z'])
        self.assertEqual(np.array(dataset.reduce(['x', 'y'], np.mean)),
                         np.mean(array))

    def test_dataset_2D_reduce_hm_alias(self):
        array = np.random.rand(11, 11)
        dataset = Dataset({'x':self.xs, 'y':self.y_ints, 'z': array},
                          kdims=[('x', 'X'), ('y', 'Y')], vdims=[('z', 'Z')])
        self.assertEqual(np.array(dataset.reduce(['x', 'y'], np.mean)),
                         np.mean(array))
        self.assertEqual(np.array(dataset.reduce(['X', 'Y'], np.mean)),
                         np.mean(array))

    def test_dataset_groupby_dynamic(self):
        array = np.random.rand(11, 11)
        dataset = Dataset({'x':self.xs, 'y':self.y_ints, 'z': array},
                          kdims=['x', 'y'], vdims=['z'])
        with DatatypeContext([self.datatype, 'dictionary' , 'dataframe'], dataset):
            grouped = dataset.groupby('x', dynamic=True)
        first = Dataset({'y': self.y_ints, 'z': array[:, 0]},
                        kdims=['y'], vdims=['z'])
        self.assertEqual(grouped[0], first)

    def test_dataset_groupby_dynamic_alias(self):
        array = np.random.rand(11, 11)
        dataset = Dataset({'x':self.xs, 'y':self.y_ints, 'z': array},
                          kdims=[('x', 'X'), ('y', 'Y')], vdims=[('z', 'Z')])
        with DatatypeContext([self.datatype, 'dictionary' , 'dataframe'], dataset):
            grouped = dataset.groupby('X', dynamic=True)
        first = Dataset({'y': self.y_ints, 'z': array[:, 0]},
                        kdims=[('y', 'Y')], vdims=[('z', 'Z')])
        self.assertEqual(grouped[0], first)

    def test_dataset_groupby_multiple_dims(self):
        dataset = Dataset((range(8), range(8), range(8), range(8),
                           np.random.rand(8, 8, 8, 8)),
                          kdims=['a', 'b', 'c', 'd'], vdims=['Value'])
        grouped = dataset.groupby(['c', 'd'])
        keys = list(product(range(8), range(8)))
        self.assertEqual(list(grouped.keys()), keys)
        for c, d in keys:
            self.assertEqual(grouped[c, d], dataset.select(c=c, d=d).reindex(['a', 'b']))

    def test_dataset_groupby_drop_dims(self):
        array = np.random.rand(3, 20, 10)
        ds = Dataset({'x': range(10), 'y': range(20), 'z': range(3), 'Val': array},
                     kdims=['x', 'y', 'z'], vdims=['Val'])
        with DatatypeContext([self.datatype, 'dictionary' , 'dataframe'], (ds, Dataset)):
            partial = ds.to(Dataset, kdims=['x'], vdims=['Val'], groupby='y')
        self.assertEqual(partial.last['Val'], array[:, -1, :].T.flatten())

    def test_dataset_groupby_drop_dims_dynamic(self):
        array = np.random.rand(3, 20, 10)
        ds = Dataset({'x': range(10), 'y': range(20), 'z': range(3), 'Val': array},
                     kdims=['x', 'y', 'z'], vdims=['Val'])
        with DatatypeContext([self.datatype, 'dictionary' , 'dataframe'], (ds, Dataset)):
            partial = ds.to(Dataset, kdims=['x'], vdims=['Val'], groupby='y', dynamic=True)
            self.assertEqual(partial[19]['Val'], array[:, -1, :].T.flatten())

    def test_dataset_groupby_drop_dims_with_vdim(self):
        array = np.random.rand(3, 20, 10)
        ds = Dataset({'x': range(10), 'y': range(20), 'z': range(3), 'Val': array, 'Val2': array*2},
                     kdims=['x', 'y', 'z'], vdims=['Val', 'Val2'])
        with DatatypeContext([self.datatype, 'dictionary' , 'dataframe'], (ds, Dataset)):
            partial = ds.to(Dataset, kdims=['Val'], vdims=['Val2'], groupby='y')
        self.assertEqual(partial.last['Val'], array[:, -1, :].T.flatten())

    def test_dataset_groupby_drop_dims_dynamic_with_vdim(self):
        array = np.random.rand(3, 20, 10)
        ds = Dataset({'x': range(10), 'y': range(20), 'z': range(3), 'Val': array, 'Val2': array*2},
                     kdims=['x', 'y', 'z'], vdims=['Val', 'Val2'])
        with DatatypeContext([self.datatype, 'dictionary' , 'dataframe'], (ds, Dataset)):
            partial = ds.to(Dataset, kdims=['Val'], vdims=['Val2'], groupby='y', dynamic=True)
            self.assertEqual(partial[19]['Val'], array[:, -1, :].T.flatten())

    def test_dataset_ndloc_lists(self):
        xs, ys = np.linspace(0.12, 0.81, 10), np.linspace(0.12, 0.391, 5)
        arr = np.arange(10)*np.arange(5)[np.newaxis].T
        ds = self.element((xs, ys, arr), kdims=['x', 'y'], vdims=['z'], datatype=[self.datatype, 'dictionary'])
        sliced = self.element((xs[[1, 2, 3]], ys[[0, 1, 2]], arr[[0, 1, 2], [1, 2, 3]]), kdims=['x', 'y'], vdims=['z'],
                         datatype=['dictionary'])
        self.assertEqual(ds.ndloc[[0, 1, 2], [1, 2, 3]], sliced)

    def test_dataset_ndloc_lists_invert_x(self):
        xs, ys = np.linspace(0.12, 0.81, 10), np.linspace(0.12, 0.391, 5)
        arr = np.arange(10)*np.arange(5)[np.newaxis].T
        ds = self.element((xs[::-1], ys, arr), kdims=['x', 'y'], vdims=['z'], datatype=[self.datatype, 'dictionary'])
        sliced = self.element((xs[::-1][[8, 7, 6]], ys[[0, 1, 2]], arr[[0, 1, 2], [8, 7, 6]]), kdims=['x', 'y'], vdims=['z'],
                         datatype=['dictionary'])
        self.assertEqual(ds.ndloc[[0, 1, 2], [1, 2, 3]], sliced)

    def test_dataset_ndloc_lists_invert_y(self):
        xs, ys = np.linspace(0.12, 0.81, 10), np.linspace(0.12, 0.391, 5)
        arr = np.arange(10)*np.arange(5)[np.newaxis].T
        ds = self.element((xs, ys[::-1], arr), kdims=['x', 'y'], vdims=['z'], datatype=[self.datatype, 'dictionary'])
        sliced = self.element((xs[[1, 2, 3]], ys[::-1][[4, 3, 2]], arr[[4, 3, 2], [1, 2, 3]]), kdims=['x', 'y'], vdims=['z'],
                         datatype=['dictionary'])
        self.assertEqual(ds.ndloc[[0, 1, 2], [1, 2, 3]], sliced)

    def test_dataset_ndloc_lists_invert_xy(self):
        xs, ys = np.linspace(0.12, 0.81, 10), np.linspace(0.12, 0.391, 5)
        arr = np.arange(10)*np.arange(5)[np.newaxis].T
        ds = self.element((xs[::-1], ys[::-1], arr), kdims=['x', 'y'], vdims=['z'], datatype=[self.datatype, 'dictionary'])
        sliced = self.element((xs[::-1][[8, 7, 6]], ys[::-1][[4, 3, 2]], arr[[4, 3, 2], [8, 7, 6]]), kdims=['x', 'y'], vdims=['z'],
                         datatype=['dictionary'])
        self.assertEqual(ds.ndloc[[0, 1, 2], [1, 2, 3]], sliced)

    def test_dataset_ndloc_slice_two_vdims(self):
        xs, ys = np.linspace(0.12, 0.81, 10), np.linspace(0.12, 0.391, 5)
        arr = np.arange(10)*np.arange(5)[np.newaxis].T
        arr2 = (np.arange(10)*np.arange(5)[np.newaxis].T)[::-1]
        ds = self.element((xs, ys, arr, arr2), kdims=['x', 'y'], vdims=['z', 'z2'], datatype=[self.datatype, 'dictionary'])
        sliced = self.element((xs[[1, 2, 3]], ys[[0, 1, 2]], arr[[0, 1, 2], [1, 2, 3]],
                          arr2[[0, 1, 2], [1, 2, 3]]), kdims=['x', 'y'], vdims=['z', 'z2'],
                         datatype=['dictionary'])
        self.assertEqual(ds.ndloc[[0, 1, 2], [1, 2, 3]], sliced)

    def test_reindex_drop_scalars_xs(self):
        reindexed = self.dataset_grid.ndloc[:, 0].reindex()
        ds = Dataset((self.grid_ys, self.grid_zs[:, 0]), 'y', 'z')
        self.assertEqual(reindexed, ds)

    def test_reindex_drop_scalars_ys(self):
        reindexed = self.dataset_grid.ndloc[0].reindex()
        ds = Dataset((self.grid_xs, self.grid_zs[0]), 'x', 'z')
        self.assertEqual(reindexed, ds)

    def test_reindex_2d_grid_to_1d(self):
        with DatatypeContext([self.datatype, 'dictionary' , 'dataframe'], self.dataset_grid):
            ds = self.dataset_grid.reindex(kdims=['x'])
        with DatatypeContext([self.datatype, 'dictionary' , 'dataframe'], Dataset):
            self.assertEqual(ds, Dataset(self.dataset_grid.columns(), 'x', 'z'))



class DaskGridInterfaceTests(GridInterfaceTests):

    def setUp(self):
        if da is None:
            raise SkipTest('DaskGridInterfaceTests requires dask.')
        super(DaskGridInterfaceTests, self).setUp()

    def init_column_data(self):
        self.xs = np.arange(11)
        self.xs_2 = self.xs**2
        self.y_ints = da.from_array(self.xs*2, 3)
        self.dataset_hm = self.element(
            (self.xs, self.y_ints), ['x'], ['y']
        )
        self.dataset_hm_alias = self.element(
            (self.xs, self.y_ints), [('x', 'X')], [('y', 'Y')]
        )

    def init_grid_data(self):
        import dask.array as da
        self.grid_xs = np.array([0, 1])
        self.grid_ys = np.array([0.1, 0.2, 0.3])
        self.grid_zs = da.from_array(np.array([[0, 1], [2, 3], [4, 5]]), 3)
        self.dataset_grid = self.element(
            (self.grid_xs, self.grid_ys, self.grid_zs), ['x', 'y'], ['z']
        )
        self.dataset_grid_alias = self.element(
            (self.grid_xs, self.grid_ys, self.grid_zs), [('x', 'X'), ('y', 'Y')], [('z', 'Z')]
        )
        self.dataset_grid_inv = self.element(
            (self.grid_xs[::-1], self.grid_ys[::-1], self.grid_zs), ['x', 'y'], ['z']
        )

    def test_select_lazy(self):
        import dask.array as da
        arr = da.from_array(np.arange(1, 12), 3)
        ds = Dataset({'x': range(11), 'y': arr}, 'x', 'y')
        self.assertIsInstance(ds.select(x=(0, 5)).data['y'], da.Array)

    def test_dataset_add_dimensions_values_hm(self):
        arr = da.from_array(np.arange(1, 12), 3)
        table =  self.dataset_hm.add_dimension('z', 1, arr, vdim=True)
        self.assertEqual(table.vdims[1], 'z')
        self.compare_arrays(table.dimension_values('z'), np.arange(1,12))

    def test_dataset_add_dimensions_values_hm_alias(self):
        arr = da.from_array(np.arange(1, 12), 3)
        table =  self.dataset_hm.add_dimension(('z', 'Z'), 1, arr, vdim=True)
        self.assertEqual(table.vdims[1], 'Z')
        self.compare_arrays(table.dimension_values('Z'), np.arange(1,12))

    def test_dataset_2D_columnar_shape(self):
        array = da.from_array(np.random.rand(11, 11), 3)
        dataset = Dataset({'x':self.xs, 'y':self.y_ints, 'z': array},
                          kdims=['x', 'y'], vdims=['z'])
        self.assertEqual(dataset.shape, (11*11, 3))

    def test_dataset_2D_gridded_shape(self):
        array = da.from_array(np.random.rand(12, 11), 3)
        dataset = Dataset({'x':self.xs, 'y': range(12), 'z': array},
                          kdims=['x', 'y'], vdims=['z'])
        self.assertEqual(dataset.interface.shape(dataset, gridded=True),
                         (12, 11))

    def test_dataset_2D_aggregate_partial_hm(self):
        array = da.from_array(np.random.rand(11, 11), 3)
        dataset = Dataset({'x':self.xs, 'y':self.y_ints, 'z': array},
                          kdims=['x', 'y'], vdims=['z'])
        self.assertEqual(dataset.aggregate(['x'], np.mean),
                         Dataset({'x':self.xs, 'z': np.mean(array, axis=0).compute()},
                                 kdims=['x'], vdims=['z']))

    def test_dataset_2D_aggregate_partial_hm_alias(self):
        array = da.from_array(np.random.rand(11, 11), 3)
        dataset = Dataset({'x':self.xs, 'y':self.y_ints, 'z': array},
                          kdims=[('x', 'X'), ('y', 'Y')], vdims=[('z', 'Z')])
        self.assertEqual(dataset.aggregate(['X'], np.mean),
                         Dataset({'x':self.xs, 'z': np.mean(array, axis=0).compute()},
                                 kdims=[('x', 'X')], vdims=[('z', 'Z')]))

    def test_dataset_2D_reduce_hm(self):
        array = da.from_array(np.random.rand(11, 11), 3)
        dataset = Dataset({'x':self.xs, 'y':self.y_ints, 'z': array},
                          kdims=['x', 'y'], vdims=['z'])
        self.assertEqual((dataset.reduce(['x', 'y'], np.mean)),
                         np.mean(array).compute())

    def test_dataset_2D_reduce_hm_alias(self):
        array = np.random.rand(11, 11)
        dataset = Dataset({'x':self.xs, 'y':self.y_ints, 'z': array},
                          kdims=[('x', 'X'), ('y', 'Y')], vdims=[('z', 'Z')])
        self.assertEqual(np.array(dataset.reduce(['x', 'y'], np.mean)),
                         np.mean(array))
        self.assertEqual(np.array(dataset.reduce(['X', 'Y'], np.mean)),
                         np.mean(array))

    def test_dataset_groupby_dynamic(self):
        array = da.from_array(np.random.rand(11, 11), 3)
        dataset = Dataset({'x':self.xs, 'y':self.y_ints, 'z': array},
                          kdims=['x', 'y'], vdims=['z'])
        with DatatypeContext([self.datatype, 'dictionary' , 'dataframe'], dataset):
            grouped = dataset.groupby('x', dynamic=True)
        first = Dataset({'y': self.y_ints, 'z': array[:, 0]},
                        kdims=['y'], vdims=['z'])
        self.assertEqual(grouped[0], first)

    def test_dataset_groupby_dynamic_alias(self):
        array = da.from_array(np.random.rand(11, 11), 3)
        dataset = Dataset({'x':self.xs, 'y':self.y_ints, 'z': array},
                          kdims=[('x', 'X'), ('y', 'Y')], vdims=[('z', 'Z')])
        with DatatypeContext([self.datatype, 'dictionary' , 'dataframe'], dataset):
            grouped = dataset.groupby('X', dynamic=True)
        first = Dataset({'y': self.y_ints, 'z': array[:, 0].compute()},
                        kdims=[('y', 'Y')], vdims=[('z', 'Z')])
        self.assertEqual(grouped[0], first)

    def test_dataset_groupby_multiple_dims(self):
        dataset = Dataset((range(8), range(8), range(8), range(8),
                           da.from_array(np.random.rand(8, 8, 8, 8), 4)),
                          kdims=['a', 'b', 'c', 'd'], vdims=['Value'])
        grouped = dataset.groupby(['c', 'd'])
        keys = list(product(range(8), range(8)))
        self.assertEqual(list(grouped.keys()), keys)
        for c, d in keys:
            self.assertEqual(grouped[c, d], dataset.select(c=c, d=d).reindex(['a', 'b']))

    def test_dataset_groupby_drop_dims(self):
        array = da.from_array(np.random.rand(3, 20, 10), 3)
        ds = Dataset({'x': range(10), 'y': range(20), 'z': range(3), 'Val': array},
                     kdims=['x', 'y', 'z'], vdims=['Val'])
        with DatatypeContext([self.datatype, 'dictionary' , 'dataframe'], (ds, Dataset)):
            partial = ds.to(Dataset, kdims=['x'], vdims=['Val'], groupby='y')
        self.assertEqual(partial.last['Val'], array[:, -1, :].T.flatten().compute())

    def test_dataset_groupby_drop_dims_dynamic(self):
        array = da.from_array(np.random.rand(3, 20, 10), 3)
        ds = Dataset({'x': range(10), 'y': range(20), 'z': range(3), 'Val': array},
                     kdims=['x', 'y', 'z'], vdims=['Val'])
        with DatatypeContext([self.datatype, 'dictionary' , 'dataframe'], (ds, Dataset)):
            partial = ds.to(Dataset, kdims=['x'], vdims=['Val'], groupby='y', dynamic=True)
            self.assertEqual(partial[19]['Val'], array[:, -1, :].T.flatten().compute())

    def test_dataset_groupby_drop_dims_with_vdim(self):
        array = da.from_array(np.random.rand(3, 20, 10), 3)
        ds = Dataset({'x': range(10), 'y': range(20), 'z': range(3), 'Val': array, 'Val2': array*2},
                     kdims=['x', 'y', 'z'], vdims=['Val', 'Val2'])
        with DatatypeContext([self.datatype, 'dictionary' , 'dataframe'], (ds, Dataset)):
            partial = ds.to(Dataset, kdims=['Val'], vdims=['Val2'], groupby='y')
        self.assertEqual(partial.last['Val'], array[:, -1, :].T.flatten().compute())

    def test_dataset_groupby_drop_dims_dynamic_with_vdim(self):
        array = da.from_array(np.random.rand(3, 20, 10), 3)
        ds = Dataset({'x': range(10), 'y': range(20), 'z': range(3), 'Val': array, 'Val2': array*2},
                     kdims=['x', 'y', 'z'], vdims=['Val', 'Val2'])
        with DatatypeContext([self.datatype, 'dictionary' , 'dataframe'], (ds, Dataset)):
            partial = ds.to(Dataset, kdims=['Val'], vdims=['Val2'], groupby='y', dynamic=True)
            self.assertEqual(partial[19]['Val'], array[:, -1, :].T.flatten().compute())

    @pd_skip
    def test_dataset_get_dframe(self):
        df = self.dataset_hm.dframe()
        self.assertEqual(df.x.values, self.xs)
        self.assertEqual(df.y.values, self.y_ints.compute())



class Image_GridInterfaceTests(Image_ImageInterfaceTests):

    datatype = 'grid'
    data_type = OrderedDict

    def init_data(self):
        self.image = Image((self.xs, self.ys, self.array))
        self.image_inv = Image((self.xs[::-1], self.ys[::-1], self.array[::-1, ::-1]))

    def test_init_data_datetime_xaxis(self):
        start = np.datetime64(dt.datetime.today())
        end = start+np.timedelta64(1, 's')
        xs = date_range(start, end, 10)
        Image((xs, self.ys, self.array))

    def test_init_data_datetime_yaxis(self):
        start = np.datetime64(dt.datetime.today())
        end = start+np.timedelta64(1, 's')
        ys = date_range(start, end, 10)
        Image((self.xs, ys, self.array))

    def test_init_bounds_datetime_xaxis(self):
        start = np.datetime64(dt.datetime.today())
        end = start+np.timedelta64(1, 's')
        xs = date_range(start, end, 10)
        image = Image((xs, self.ys, self.array))
        self.assertEqual(image.bounds.lbrt(), (start, 0, end, 10))

    def test_init_bounds_datetime_yaxis(self):
        start = np.datetime64(dt.datetime.today())
        end = start+np.timedelta64(1, 's')
        ys = date_range(start, end, 10)
        image = Image((self.xs, ys, self.array))
        self.assertEqual(image.bounds.lbrt(), (-10, start, 10, end))

    def test_init_densities_datetime_xaxis(self):
        start = np.datetime64(dt.datetime.today())
        end = start+np.timedelta64(1, 's')
        xs = date_range(start, end, 10)
        image = Image((xs, self.ys, self.array))
        self.assertEqual(image.xdensity, 1e-5)
        self.assertEqual(image.ydensity, 1)

    def test_init_densities_datetime_yaxis(self):
        start = np.datetime64(dt.datetime.today())
        end = start+np.timedelta64(1, 's')
        ys = date_range(start, end, 10)
        image = Image((self.xs, ys, self.array))
        self.assertEqual(image.xdensity, 0.5)
        self.assertEqual(image.ydensity, 1e-5)

    def test_sample_datetime_xaxis(self):
        start = np.datetime64(dt.datetime.today())
        end = start+np.timedelta64(1, 's')
        xs = date_range(start, end, 10)
        image = Image((xs, self.ys, self.array))
        curve = image.sample(x=xs[3])
        self.assertEqual(curve, Curve((self.ys, self.array[:, 3]), 'y', 'z'))

    def test_sample_datetime_yaxis(self):
        start = np.datetime64(dt.datetime.today())
        end = start+np.timedelta64(1, 's')
        ys = date_range(start, end, 10)
        image = Image((self.xs, ys, self.array))
        curve = image.sample(y=ys[3])
        self.assertEqual(curve, Curve((self.xs, self.array[3]), 'x', 'z'))

    def test_range_datetime_xdim(self):
        start = np.datetime64(dt.datetime.today())
        end = start+np.timedelta64(1, 's')
        xs = date_range(start, end, 10)
        image = Image((xs, self.ys, self.array))
        self.assertEqual(image.range(0), (start, end))

    def test_range_datetime_ydim(self):
        start = np.datetime64(dt.datetime.today())
        end = start+np.timedelta64(1, 's')
        ys = date_range(start, end, 10)
        image = Image((self.xs, ys, self.array))
        self.assertEqual(image.range(1), (start, end))

    def test_dimension_values_datetime_xcoords(self):
        start = np.datetime64(dt.datetime.today())
        end = start+np.timedelta64(1, 's')
        xs = date_range(start, end, 10)
        image = Image((xs, self.ys, self.array))
        self.assertEqual(image.dimension_values(0, expanded=False), xs)

    def test_dimension_values_datetime_ycoords(self):
        start = np.datetime64(dt.datetime.today())
        end = start+np.timedelta64(1, 's')
        ys = date_range(start, end, 10)
        image = Image((self.xs, ys, self.array))
        self.assertEqual(image.dimension_values(1, expanded=False), ys)

    def test_slice_datetime_xaxis(self):
        start = np.datetime64(dt.datetime.today())
        end = start+np.timedelta64(1, 's')
        xs = date_range(start, end, 10)
        image = Image((xs, self.ys, self.array))
        sliced = image[start+np.timedelta64(530, 'ms'): start+np.timedelta64(770, 'ms')]
        self.assertEqual(sliced.dimension_values(2, flat=False),
                         self.array[:, 5:8])

    def test_slice_datetime_yaxis(self):
        start = np.datetime64(dt.datetime.today())
        end = start+np.timedelta64(1, 's')
        ys = date_range(start, end, 10)
        image = Image((self.xs, ys, self.array))
        sliced = image[:, start+np.timedelta64(120, 'ms'): start+np.timedelta64(520, 'ms')]
        self.assertEqual(sliced.dimension_values(2, flat=False),
                         self.array[1:5, :])

    def test_slice_xaxis_inv(self):
        sliced = self.image_inv[0.3:5.2]
        self.assertEqual(sliced.bounds.lbrt(), (0, 0, 6, 10))
        self.assertEqual(sliced.xdensity, 0.5)
        self.assertEqual(sliced.ydensity, 1)
        self.assertEqual(sliced.dimension_values(2, flat=False),
                         self.array[:, 5:8])

    def test_slice_yaxis_inv(self):
        sliced = self.image_inv[:, 1.2:5.2]
        self.assertEqual(sliced.bounds.lbrt(), (-10, 1., 10, 5))
        self.assertEqual(sliced.xdensity, 0.5)
        self.assertEqual(sliced.ydensity, 1)
        self.assertEqual(sliced.dimension_values(2, flat=False),
                         self.array[1:5, :])

    def test_slice_both_axes_inv(self):
        sliced = self.image_inv[0.3:5.2, 1.2:5.2]
        self.assertEqual(sliced.bounds.lbrt(), (0, 1., 6, 5))
        self.assertEqual(sliced.xdensity, 0.5)
        self.assertEqual(sliced.ydensity, 1)
        self.assertEqual(sliced.dimension_values(2, flat=False),
                         self.array[1:5, 5:8])

    def test_slice_x_index_y_inv(self):
        sliced = self.image_inv[0.3:5.2, 5.2]
        self.assertEqual(sliced.bounds.lbrt(), (0, 5.0, 6.0, 6.0))
        self.assertEqual(sliced.xdensity, 0.5)
        self.assertEqual(sliced.ydensity, 1)
        self.assertEqual(sliced.dimension_values(2, flat=False),
                         self.array[5:6, 5:8])

    def test_index_x_slice_y_inv(self):
        sliced = self.image_inv[3.2, 1.2:5.2]
        self.assertEqual(sliced.bounds.lbrt(), (2.0, 1.0, 4.0, 5.0))
        self.assertEqual(sliced.xdensity, 0.5)
        self.assertEqual(sliced.ydensity, 1)
        self.assertEqual(sliced.dimension_values(2, flat=False),
                         self.array[1:5, 6:7])



class RGB_GridInterfaceTests(RGB_ImageInterfaceTests):

    datatype = 'grid'
    data_type = OrderedDict

    def init_data(self):
        self.rgb = RGB((self.xs, self.ys, self.rgb_array[:, :, 0],
                        self.rgb_array[:, :, 1], self.rgb_array[:, :, 2]))


class HSV_GridInterfaceTests(HSV_ImageInterfaceTests):

    datatype = 'grid'
    data_type = OrderedDict

    def init_data(self):
        self.hsv = HSV((self.xs, self.ys, self.hsv_array[:, :, 0],
                        self.hsv_array[:, :, 1], self.hsv_array[:, :, 2]))
